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There is a mismatch between the score for a wildcard match and an exact match

I search for

recording:live OR recording:luve* 

And here is the Explain Output from Search

1.4196585 = (MATCH) max plus 0.1 times others of:
  0.3763506 = (MATCH) ConstantScore(recording:luve*), product of:
    1.0 = boost
    0.3763506 = queryNorm
  1.3820235 = (MATCH) weight(recording:luve in 0), product of:
    0.7211972 = queryWeight(recording:luve), product of:
      1.9162908 = idf(docFreq=1, maxDocs=5)
      0.3763506 = queryNorm
    1.9162908 = (MATCH) fieldWeight(recording:luve in 0), product of:
      1.0 = tf(termFreq(recording:luve)=1)
      1.9162908 = idf(docFreq=1, maxDocs=5)
      1.0 = fieldNorm(field=recording, doc=0)

0.3763506 = (MATCH) max plus 0.1 times others of:
  0.3763506 = (MATCH) ConstantScore(recording:luve*), product of:
    1.0 = boost
    0.3763506 = queryNorm

In my test I have 5 documents one contains an exact match, another a wildcard match and the other three do not match all. The score of the exact match is 1.4 compared to 0.37 for the wildcard match, thats nearly a factor of 4. With a much larger index the score for an exact match on a rare term compared to a wildcard search would be even higher.

The whole difference is due to the different scoring mechism used for wildcard to exact match, wildcards don't take tf/idf or lengthnorm into account you just get a constant score for each match. Now I'm not bothered about tf or lengthnorm in my data domain it doesnt make much difference but the idf score is a real killer. Because the matching doc is found once in 5 documents its idf contribution is idf squared i.e 3.61

I know this constant score is quicker than calculating the tf*idf*lengthnorm for each wildcard match but it doesn't make sense to me for the idf to contribute so much to the score. I also know I can change the rewrite method but there are two problems with this.

  1. Scoring rewrite methods perform less well because they are calculating idf, tf and lengthnorm. idf is the only value I need.

  2. Ones that do calculate the score dont make much sense either as they would calculate the idf of the matching term even though this isn't what was actually search for and this term could be rarer than what I was actually searching for, possibly boosting it higher than the exact match.

(I could also change the similarity class to override the idf calculation so it always returns 1 but that doesn't make sense because the idf is very useful for comparing exact matches to different words

i.e recording:luve OR recording:luve* OR recording:the OR recording:the*

I would want matches to luve to score higher than matches to the common word the )

So does a rewrite method already exist or is possible for it to just calculate the idf of the term it was trying to match to so for example in this case I search for 'luve' and the wildcard matches on 'luvely' that it would multiple the luvely match by the idf of luve (3.61). This way my wildcard match would be comparable to the exact match and I can just change my query to boost the exact match slightly so exact match would always score higher than wildcard match but not too much higher


recording:live^1.2 OR recording:luve* 

and with this mythical rewrite method this would give (depending on queryNorm):

  • Doc 0:0:1.692
  • Doc 1:0:1.419
share|improve this question
Do you really need wildcards? Uwe (Lucene committer) says: "There is a simple Lucene-Rule: Whenever you need wildcards think about your analysis, you probably did something wrong" – jpountz Mar 9 '12 at 10:53
When I say wildcard its actually a prefix query (so just wildcard at end) but yes I do really need them from the ui the user just types in 'luve' but they expect that to also find words starting with what they have typed. – Paul Taylor Mar 9 '12 at 11:06

I think you are looking for PrefixQuery.setRewriteMethod and MultiTermQuery.SCORING_BOOLEAN_QUERY_REWRITE.

share|improve this answer
No, unfortunately that suffers from problem 2 above. If luvely was a rarer term that luve then the document containing luvely could be higher than luve even though we were searching for luve – Paul Taylor Mar 9 '12 at 11:13
You can still use a Boolean query, with an exact clause with a high boost and a wildcard clause with a low boost: recording:luve^10 recording:luve* – jpountz Mar 9 '12 at 13:37
That doesnt solve the problem consistently, because when the idf of both terms is similar the exact match is going to be ten times the wildcardmatch, but when the wildcard has a much better idf then the results will be nearer. So it will work well in some cases but nother others – Paul Taylor Mar 9 '12 at 13:58
Ive found the issue and an attempted solution, just working through it. – Paul Taylor Mar 9 '12 at 13:59
up vote 0 down vote accepted

Okay setting this as the rewrite method for prefix queries seems to work

public static class MultiTermUseIdfOfSearchTerm<Q extends Query> extends TopTermsRewrite<BooleanQuery> {

    //public static final class MultiTermUseIdfOfSearchTerm extends TopTermsRewrite<BooleanQuery> {
        private final Similarity similarity;

         * Create a TopTermsScoringBooleanQueryRewrite for
         * at most <code>size</code> terms.
         * <p>
         * NOTE: if {@link BooleanQuery#getMaxClauseCount} is smaller than
         * <code>size</code>, then it will be used instead.
        public MultiTermUseIdfOfSearchTerm(int size) {
            this.similarity = new DefaultSimilarity();


        protected int getMaxSize() {
            return BooleanQuery.getMaxClauseCount();

        protected BooleanQuery getTopLevelQuery() {
            return new BooleanQuery(true);

        protected void addClause(BooleanQuery topLevel, Term term, float boost) {
            final Query tq = new ConstantScoreQuery(new TermQuery(term));
            topLevel.add(tq, BooleanClause.Occur.SHOULD);

        protected float getQueryBoost(final IndexReader reader, final MultiTermQuery query)
                throws IOException {
            float idf = 1f;
            float df;
            if (query instanceof PrefixQuery)
                PrefixQuery fq = (PrefixQuery) query;
                df = reader.docFreq(fq.getPrefix());
                    idf = (float)Math.pow(similarity.idf((int) df, reader.numDocs()),2);
            return idf;

        public BooleanQuery rewrite(final IndexReader reader, final MultiTermQuery query) throws IOException {
            BooleanQuery  bq = (BooleanQuery)super.rewrite(reader, query);

            float idfBoost = getQueryBoost(reader, query);
            Iterator<BooleanClause> iterator = bq.iterator();
                BooleanClause next =;
                next.getQuery().setBoost(next.getQuery().getBoost() * idfBoost);
            return bq;

share|improve this answer

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